| Literature DB >> 26296973 |
Ji Yun Lee1, Sun Young Kim1, Charny Park1, Nayoung K D Kim2, Jiryeon Jang1, Kyunghee Park2, Jun Ho Yi3, Mineui Hong4,5, Taejin Ahn2, Oliver Rath6, Julia Schueler6, Seung Tae Kim1, In-Gu Do5, Sujin Lee1, Se Hoon Park1, Yong Ick Ji7, Dukwhan Kim7, Joon Oh Park1,4, Young Suk Park1, Won Ki Kang1, Kyoung-Mee Kim4,5, Woong-Yang Park2,7, Ho Yeong Lim1, Jeeyun Lee1,4.
Abstract
BACKGROUND: In this study, we established patient-derived tumor cell (PDC) models using tissues collected from patients with metastatic cancer and assessed whether these models could be used as a tool for genome-based cancer treatment.Entities:
Keywords: gastric cancer; genomic analysis; patient-derived cells; targeted therapy
Mesh:
Substances:
Year: 2015 PMID: 26296973 PMCID: PMC4694854 DOI: 10.18632/oncotarget.4627
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Figure 1Workflow for establishing PDC models
Baseline patient characteristics (N = 116)
| Variable | Patients ( | % |
|---|---|---|
| Age-year | ||
| Median | 55 | |
| Range | 21–80 | |
| Sex | ||
| Male | 61 | 52.6 |
| Female | 55 | 47.4 |
| Cancer Types | ||
| Gastric cancer | 58 | 50.0 |
| Colorectal cancer | 25 | 21.6 |
| Hepatocellular carcinoma | 8 | 6.9 |
| Pancreatic cancer | 6 | 5.2 |
| Cholangiocarcinoma | 3 | 2.6 |
| Sarcoma | 4 | 3.4 |
| Non-small cell lung cancer | 3 | 2.6 |
| Neuroendocrine tumor | 3 | 2.6 |
| Melanoma | 2 | 1.7 |
| Renal cell carcinoma | 1 | 0.9 |
| Esophageal squamous cell | 1 | 0.9 |
| Gall bladder cancer | 1 | 0.9 |
| Genitourinary cancer | 1 | 0.9 |
| Source of PDCs | ||
| Ascites | 101 | 87.1 |
| Pleural effusion | 12 | 10.3 |
| Pericardial effusion | 1 | 0.9 |
| Others | 2 | 1.7 |
Figure 2Mutational analysis of the patient-derived cell (PDC) cohort
Overall genetic alterations in PDCs were identified by Ion Ampliseq (red) and nCounter Copy number variation assay (blue).
Figure 3A. Venn diagram showing the variants detected in the primary tumor and patient-derived cells (PDCs)
Among 695 genomic alterations from 32 samples, 402 were commonly detected from both types of cells. B. Correlations of variant allele frequencies (VAFs) between primary tumor PDCs. The plot shows VAFs of commonly identified SNVs and InDels from 32 samples. The Pearson correlation coefficient between the variants from primary tumor cells and PDCs was 0.801.
Genetic correlation of primary tumors and the corresponding patient-derived cells using targeted sequencing
| Case # | VAF correlation(>=0.1) | Intersection |
|---|---|---|
| S-1 | 0.978 | 20 |
| S-2 | 0.988 | 26 |
| S-3 | 0.954 | 36 |
| S-4 | 0.961 | 24 |
| S-5 | 0.903 | 27 |
| S-6 | 0.952 | 29 |
| S-7 | 0.969 | 25 |
| S-8 | 0.979 | 28 |
| S-9 | 0.779 | 22 |
| S-10 | 0.802 | 35 |
| S-11 | 0.699 | 33 |
| S-12 | 0.992 | 17 |
| S-13 | 0.855 | 30 |
| S-14 | 0.848 | 4 |
| S-15 | 0.756 | 27 |
| S-16 | 0.633 | 19 |
| Average/total | 0.878 | 402 |
| Total SD | 0.11439697 | 7.83049594 |
Correlation between drug sensitivity profile and the actual response to targeted agents
| PDC# | Diagnosis | Doubling time (hr) | Analysis/stock passage | Maximum passage | Treatment outcome to targeted agents | IC50 | Highlight genomic alteration | Clinical response |
|---|---|---|---|---|---|---|---|---|
| 001 | Gastric cancer | 85.92 | 2 | 7 | Lapatinib | 1.1 | SMARCB1, HER2 | Sensitive |
| 009 | Hepatocellular carcinoma | 72 | 3 | 9 | Sorafenib | 2.2 | Resistant | |
| 011 | Hepatocellular carcinoma | 116.4 | 2 | 7 | Sorafenib | 2.3 | HRAS | Resistant |
| 014 | Melanoma | 57.6 | 2 | 12 | Vemurafenib | > 10 | BRAF, FGFR1, CDKN1A, MCL1 | Resistant |
| 042 | Hepatocellular carcinoma | 115.6 | 2 | 9 | Sorafenib | 2.1 | Resistant | |
| 045 | Hepatocellular carcinoma | 65.02 | 3 | 13 | Sorafenib | 2.1 | HRAS, STK11 | Resistant |
| 051 | Hepatocellular carcinoma | 57.8 | 2 | 12 | Sorafenib | 1.6 | MLH1 | Sensitive |
| 076 | Hepatocellular carcinoma | 57.8 | 3 | 11 | Sorafenib | 1.5 | Sensitive | |
| 081 | Hepatocellular carcinoma | 65.02 | 2 | 9 | Sorafenib | 4.7 | HRAS | Resistant |
| 114 | Melanoma | 144.4 | 2 | 9 | Vemurafenib | > 10 | NRAS | Resistant |
Figure 4Generation and validation of patient-derived cell (PDC) models
A. Micrographs of tissue sections and immunohistochemical analysis of PDCs and their corresponding primary tumors (40×). B. Comparison of PDC xenografts according to passage number. C. Paired comparisons of four samples. The left bottom panel shows dot plots of allele frequencies for two samples. The diagonal line shows the allele frequency histogram for four samples. The right top panel shows the number of intersections and allele frequency correlations of variants. D. Venn diagram of the identified variants and intersection of genes from the four samples. E. BRAF (red) and PDGFA (blue) allele frequency in P0, P1, and P2.
Figure 5Gene expression analysis of multiple gastric cancer cohorts and PDCs
A. Gene expression analysis work flow for integration of three different datasets. B. All-pair sample correlations of TCGA GC samples with ACRG, PDC PC, and PDC others (samples excluding gastric cancer). C. Two-dimensional plot of three dataset samples using principal component analysis. Samples including TCGA GC, TCGA normal, ACRG, PDC GC, and PDC others are indicated in the key. D. Sample hierarchical clustering of gene expression (485 genes and 716 samples) after meta-analysis. The color of the bottom bar indicates the sample type: blue, cluster-enriched normal samples; red, cluster-enriched tumor samples. E. Case studies of the differential expression of oncogenes (i.e., MET and ERBB2). Bar plots show the expression levels of these genes in five different groups. Differences were plotted by HSD tests among five groups with 95% family-wise confidence level. Red indicates the comparison of normal and tumor samples, and black indicates comparisons between tumor samples.